Neural dialog state tracker for large ontologies by attention mechanism

Youngsoo Jang, Jiyeon Ham, Byung-Jun Lee, Youngjae Chang, Kee-Eung Kim
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引用次数: 17

Abstract

This paper presents a dialog state tracker submitted to Dialog State Tracking Challenge 5 (DSTC 5) with details. To tackle the challenging cross-language human-human dialog state tracking task with limited training data, we propose a tracker that focuses on words with meaningful context based on attention mechanism and bi-directional long short term memory (LSTM). The vocabulary including a plenty of proper nouns is vectorized with a sufficient amount of related texts crawled from web to learn a good embedding for words not existent in training dialogs. Despite its simplicity, our proposed tracker succeeded to achieve high accuracy without sophisticated pre- and post-processing.
基于注意机制的大型本体神经对话状态跟踪
本文提出了一个对话状态跟踪器,并提交给对话状态跟踪挑战5 (DSTC 5)。为了解决具有挑战性的训练数据有限的跨语言人机对话状态跟踪任务,我们提出了一种基于注意机制和双向长短期记忆(LSTM)的跟踪器,该跟踪器关注具有有意义上下文的单词。将包含大量专有名词的词汇与从网络中抓取的足够数量的相关文本进行矢量化,以学习对训练对话中不存在的单词进行很好的嵌入。尽管其简单,我们提出的跟踪器成功地实现了高精度,没有复杂的预处理和后处理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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